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Winner or Loser? Analysing your test results with Causal Impact on R Studio

Winner or Loser? Analysing your test results with Causal Impact on R Studio

Presentation by Giulia Panozzo at Measurefest, a BrightonSEO Fringe Event, in October 2022.

'In this session you will learn how to use Causal Impact Analysis on R Studio, a powerful way to analyse test results and infer the impact of a change on a group of pages. It can be used in any areas where changes in strategy need to be justified by test results first, and it’s an invaluable tool to help your decision-making and clearly show stakeholders the impact of your team’s work.'

Giulia Panozzo

October 19, 2022
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  1. #brightonseo Winner or Loser? Analysing Your Test Results with Causal

    Impact on R Studio Slideshare.Net/GiuliaPanozzo1 @SequinsNSearch Giulia Panozzo
  2. Giulia Panozzo - @SequinsNSearch #brightonseo Causal Impact gives you the

    confidence to leverage statistically significant results and drive changes at scale
  3. Giulia Panozzo - @SequinsNSearch #brightonseo You can use Causal Impact

    on a number of domains, not only on SEO tests!
  4. Giulia Panozzo - @SequinsNSearch #brightonseo Powerful package to analyse data

    and infer the cumulative impact of a change in a time series
  5. Giulia Panozzo - @SequinsNSearch #brightonseo Uses past data to predict

    the outcome in the absence of the treatment (the counterfactual)
  6. Giulia Panozzo - @SequinsNSearch #brightonseo How can it help us

    in marketing? Example of a clear winner from a title tag change Clicks: +58% CTR: +38% Position: -15%
  7. Giulia Panozzo - @SequinsNSearch #brightonseo It can help forecast the

    direction of changes at scale and help make a case for more resources
  8. Giulia Panozzo - @SequinsNSearch #brightonseo How can it help us

    in marketing? Example of a clear loser from a title tag change
  9. Giulia Panozzo - @SequinsNSearch #brightonseo By clearly identifying a winner

    or loser, we can understand what works and doesn’t work for our audience
  10. Giulia Panozzo - @SequinsNSearch #brightonseo 1. Download R Studio Download

    R first https://cran.r-project.org/ Download RStudio https://www.rstudio.com/products/rstudio/download/
  11. Giulia Panozzo - @SequinsNSearch #brightonseo The first column is always

    your test group. Other columns can be used as control groups if they are a good fit
  12. Giulia Panozzo - @SequinsNSearch #brightonseo The pre-period should be at

    least twice as long as the post-period, to allow the model to plot the actual VS predicted outcome
  13. Giulia Panozzo - @SequinsNSearch #brightonseo Column titles can error out

    if they contain special characters, spaces, capitalised letters
  14. Giulia Panozzo - @SequinsNSearch #brightonseo Start small, then expand your

    datasets with additional controls and features once you’re comfortable with the script
  15. Giulia Panozzo - @SequinsNSearch #brightonseo Create a document to map

    internal changes & external events This will allow you to take into account any other known factors and isolate the treatment in the analysis
  16. Giulia Panozzo - @SequinsNSearch #brightonseo Sometimes, your test will be

    inconclusive, or might be a loser even when you thought it’d be an easy winner
  17. Giulia Panozzo - @SequinsNSearch #brightonseo In that case, you can

    run the test a little longer, or repeat the test with bigger groups
  18. Giulia Panozzo - @SequinsNSearch #brightonseo If it’s still inconclusive or

    a loser, it’s probably best to revert the change and focus on other tests
  19. Giulia Panozzo - @SequinsNSearch #brightonseo References and useful resources •

    How we use causal impact analysis to validate campaign success - Part and Sum • Measuring No-ID Campaigns with Causal Impact - Remerge & Alicia Horsch • Causal Impact – Data Skeptic • R Studio on GitHub • The Comprehensive R Archive Network • Causal Impact for App Store Analysis - William Martin